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Main Authors: Kambara, Motonari, Seno, Koki, Kaichi, Tomoya, Wang, Yanan, Sugiura, Komei
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.25481
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author Kambara, Motonari
Seno, Koki
Kaichi, Tomoya
Wang, Yanan
Sugiura, Komei
author_facet Kambara, Motonari
Seno, Koki
Kaichi, Tomoya
Wang, Yanan
Sugiura, Komei
contents We address language-conditioned robotic manipulation using flow-based trajectory generation, which enables training on human and web videos of object manipulation and requires only minimal embodiment-specific data. This task is challenging, as object trajectory generation from pre-manipulation images and natural language instructions requires appropriate instruction-flow alignment. To tackle this challenge, we propose the flow-based Language Instruction-guided open-Loop ACtion generator (LILAC). This flow-based Vision-Language-Action model (VLA) generates object-centric 2D optical flow from an RGB image and a natural language instruction, and converts the flow into a 6-DoF manipulator trajectory. LILAC incorporates two key components: Semantic Alignment Loss, which strengthens language conditioning to generate instruction-aligned optical flow, and Prompt-Conditioned Cross-Modal Adapter, which aligns learned visual prompts with image and text features to provide rich cues for flow generation. Experimentally, our method outperformed existing approaches in generated flow quality across multiple benchmarks. Furthermore, in physical object manipulation experiments using free-form instructions, LILAC demonstrated a superior task success rate compared to existing methods. The project page is available at https://lilac-75srg.kinsta.page/.
format Preprint
id arxiv_https___arxiv_org_abs_2603_25481
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publishDate 2026
record_format arxiv
spellingShingle LILAC: Language-Conditioned Object-Centric Optical Flow for Open-Loop Trajectory Generation
Kambara, Motonari
Seno, Koki
Kaichi, Tomoya
Wang, Yanan
Sugiura, Komei
Robotics
We address language-conditioned robotic manipulation using flow-based trajectory generation, which enables training on human and web videos of object manipulation and requires only minimal embodiment-specific data. This task is challenging, as object trajectory generation from pre-manipulation images and natural language instructions requires appropriate instruction-flow alignment. To tackle this challenge, we propose the flow-based Language Instruction-guided open-Loop ACtion generator (LILAC). This flow-based Vision-Language-Action model (VLA) generates object-centric 2D optical flow from an RGB image and a natural language instruction, and converts the flow into a 6-DoF manipulator trajectory. LILAC incorporates two key components: Semantic Alignment Loss, which strengthens language conditioning to generate instruction-aligned optical flow, and Prompt-Conditioned Cross-Modal Adapter, which aligns learned visual prompts with image and text features to provide rich cues for flow generation. Experimentally, our method outperformed existing approaches in generated flow quality across multiple benchmarks. Furthermore, in physical object manipulation experiments using free-form instructions, LILAC demonstrated a superior task success rate compared to existing methods. The project page is available at https://lilac-75srg.kinsta.page/.
title LILAC: Language-Conditioned Object-Centric Optical Flow for Open-Loop Trajectory Generation
topic Robotics
url https://arxiv.org/abs/2603.25481